Global Optimization For Recovery Of Clipped Signals Corrupted With Poisson-Gaussian Noise

IEEE SIGNAL PROCESSING LETTERS(2020)

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摘要
We study a variational formulation for reconstructing nonlinearly distorted signals corrupted with a Poisson-Gaussian noise. In this situation, the data fidelity term consists of a sum of a weighted least squares term and a logarithmic one. Both of them are precomposed by a nonlinearity, modelling a clipping effect, which is assumed to be rational. A regularization term, being a piecewise rational approximation of the l(0) function provides a suitable sparsity measure with respect to a preset linear operator. We propose a global optimization approach for such a problem. More specifically, it is first transformed into a generalized moment problem by introducing some auxiliary variables. Then, a hierarchy of semidefinite programming relaxations is built. Numerical examples show the good performance of the proposed approach.
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关键词
Signal reconstruction, polynomial optimization, Poisson-Gaussian noise, l(0) penalization, nonconvex models, Pade approximation
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